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Plant Physiological Analysis to Overcome Limitations to Plant Phenotyping

Academic Article
Publication Date:
2023
abstract:
Plant physiological status is the interaction between the plant genome and the prevailing growth conditions. Accurate characterization of plant physiology is, therefore, fundamental to effective plant phenotyping studies; particularly those focused on identifying traits associated with improved yield, lower input requirements, and climate resilience. Here, we outline the approaches used to assess plant physiology and how these techniques of direct empirical observations of processes such as photosynthetic CO2 assimilation, stomatal conductance, photosystem II electron transport, or the effectiveness of protective energy dissipation mechanisms are unsuited to high-throughput phenotyping applications. Novel optical sensors, remote/proximal sensing (multi- and hyperspectral reflectance, infrared thermography, sun-induced fluorescence), LiDAR, and automated analyses of below-ground development offer the possibility to infer plant physiological status and growth. However, there are limitations to such 'indirect' approaches to gauging plant physiology. These methodologies that are appropriate for the rapid high temporal screening of a number of crop varieties over a wide spatial scale do still require 'calibration' or 'validation' with direct empirical measurement of plant physiological status. The use of deep-learning and artificial intelligence approaches may enable the effective synthesis of large multivariate datasets to more accurately quantify physiological characters rapidly in high numbers of replicate plants. Advances in automated data collection and subsequent data processing represent an opportunity for plant phenotyping efforts to fully integrate fundamental physiological data into vital efforts to ensure food and agro-economic sustainability.
Iris type:
01.01 Articolo in rivista
Keywords:
photosynthesis; climate resilience; LiDAR; spectral reflectance; hyperspectral; deep-learning; partial least squares regression; phenomics; plant ecophysiology
List of contributors:
Carli, Andrea; Balestrini, RAFFAELLA MARIA; Montesano, Vincenzo; Haworth, DUNCAN MATTHEW; Daccache, Andre; Marino, Giovanni; Atzori, Giulia; Conte, Adriano; Fabbri, ANDRE' PIERRE MARIE; Centritto, Mauro
Authors of the University:
ATZORI GIULIA
BALESTRINI RAFFAELLA MARIA
CENTRITTO MAURO
CONTE ADRIANO
DACCACHE ANDRE
FABBRI ANDRE' PIERRE MARIE
HAWORTH DUNCAN MATTHEW
MARINO GIOVANNI
MONTESANO VINCENZO
Handle:
https://iris.cnr.it/handle/20.500.14243/451172
Published in:
PLANTS
Journal
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